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A Hybrid Movie Recommendation Method Based on Social Similarity and Item Attributes

机译:基于社会相似度和项目属性的混合电影推荐方法

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With the increasing demand for personalized recommendation, traditional collaborative filtering cannot satisfy users' needs. Social behaviors such as tags, comments and likes are becoming more and more popular among the recommender system users, and are attracting the attentions of the researchers in this domain. The behavior characteristics can be integrated with traditional interest community and some content features. In this paper, we put forward a hybrid recommendation approach that combines social behaviors, the genres of movies and existing collaborative filtering algorithms to perform movie recommendation. The experiments with MovieLens dataset show the advantage of our proposed method comparing to the benchmark method in terms of recommendation accuracy.
机译:随着对个性化推荐的需求的增加,传统的协作过滤无法满足用户的需求。诸如标签,评论和喜欢之类的社交行为在推荐系统用户中越来越流行,并且吸引了该领域研究人员的注意力。行为特征可以与传统兴趣社区和某些内容特征集成在一起。在本文中,我们提出了一种混合推荐方法,该方法结合了社会行为,电影类型和现有的协同过滤算法来执行电影推荐。使用MovieLens数据集进行的实验表明,在推荐准确性方面,与基准方法相比,我们提出的方法具有优势。

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